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Keywords: Gaussian process regression
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Proceedings Papers
Proc. ASME. OMAE2020, Volume 2B: Structures, Safety, and Reliability, V02BT02A002, August 3–7, 2020
Paper No: OMAE2020-19119
... and demonstrates an approach which utilizes probabilistic machine learning techniques to effectively reduce uncertainty. More specifically we use Gaussian process regression to enable fast approximation of the relevant structural response from complex simulations. The probabilistic nature of the method adds...